BACA: Jurnal Dokumentasi dan Informasi
Vol 41, No 2 (2020): DESEMBER

ANALYZING THE IMPACT OF RESAMPLING METHOD FOR IMBALANCED DATA TEXT IN INDONESIAN SCIENTIFIC ARTICLES CATEGORIZATION

Ariani Indrawati (Lembaga Ilmu Pengetahuan Indonesia)
Hendro Subagyo (Lembaga Ilmu Pengetahuan Indonesia)
Andre Sihombing (Lembaga Ilmu Pengetahuan Indonesia)
Wagiyah Wagiyah (Lembaga Ilmu Pengetahuan Indonesia)
Sjaeful Afandi (Lembaga Ilmu Pengetahuan Indonesia)



Article Info

Publish Date
11 Dec 2020

Abstract

The extremely skewed data in artificial intelligence, machine learning, and data mining cases are often given misleading results. It is caused because machine learning algorithms are designated to work best with balanced data. However, we often meet with imbalanced data in the real situation. To handling imbalanced data issues, the most popular technique is resampling the dataset to modify the number of instances in the majority and minority classes into a standard balanced data. Many resampling techniques, oversampling, undersampling, or combined both of them, have been proposed and continue until now. Resampling techniques may increase or decrease the classifier performance. Comparative research on resampling methods in structured data has been widely carried out, but studies that compare resampling methods with unstructured data are very rarely conducted. That raises many questions, one of which is whether this method is applied to unstructured data such as text that has large dimensions and very diverse characters. To understand how different resampling techniques will affect the learning of classifiers for imbalanced data text, we perform an experimental analysis using various resampling methods with several classification algorithms to classify articles at the Indonesian Scientific Journal Database (ISJD). From this experiment, it is known resampling techniques on imbalanced data text generally to improve the classifier performance but they are doesn’t give significant result because data text has very diverse and large dimensions.

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Journal Info

Abbrev

BACA

Publisher

Subject

Computer Science & IT Library & Information Science

Description

BACA: Jurnal Dokumentasi dan Informasi atau yang disebut Jurnal BACA terbit pertama kali tahun 1974. Awal mula naskah terbitan bersifat populer-ilmiah. Namun, seiring dengan adanya tuntutan peningkatan kualitas terbitan sesuai dengan ketentuan akreditasi terbitan berkala ilmiah ditetapkan sebagai ...